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ITRS 2000 Conference
July16-18, 2001 San Francisco,CA
InternationalTechnology
Roadmap forSemiconductors
2
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
ITRS 2001 Conference July 16-18, 2001 San Francisco, California Defect Reduction Cross-Cut Technology Working Group2001 Version
Milton Godwin Applied Materials, US
Toshihiko OsadaFujitsu, Japan
Lothar PfitznerFraunhofer Institute
3
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
2001 ITRS DR ITWG Co-chairs
• United States– Milt Godwin
• Applied Materials MDR
– Christopher Long• IBM
• Taiwan– Len Mei
• ProMOS Tech, Inc.
• Korea– D.H. Cho
• Samsung
– H.J. Kwon• Hyundai
• Europe– Lothar Pfitzner
• Fraunhofer Institute
– Christine Gombar • ST Microelectronics
• Japan– Toshihiko Osada
• Fujitsu
– Hiroshi Kitajima • NEC
4
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
2001 ITRS Defect Reduction US Domestic TWG Membership
Manuela Huber (C) ISMT/Infineon Fred Lakhani (C) ISMTDaren Dance (C) Wright, Williams & Kelly Wanda Tomlinson (C) IBM
Dan Maynard IBM Prashant Aji KLA-TencorChris Long IBM Ken Tobin ORNL
Bobby Pau Conexant
Tony Geller Sandia National LabsRick Jarvis (C) ISMT/AMD Ray Depew Agilent Technologies
Scott Buck Intel
Jerry Brown ST MicroelectronicsDan Grelinger TI Bill Fil (C) IBMDan Hirleman Purdue University Marc Anderson Metara, Inc.Paul Jones n-Line Corporation Charlie Peterson Millipore
Thommy Thomas n-Line Corporation James McAndrew Air LiquideShoaib Zaidi Infineon Technologies Ralph Richardson Air ProductsRon Remke ISMT/Lucent Josh Shenk Asyst
David Jensen AMD Michael Patterson Intel
Yield Model and Defect Budget
Defect Detection
Defect Sources and Mechanisms
Defect Prevention and Elimination
5
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
2001 ITRS Defect Reduction JEITA WG11 Membership
Toshihiko Osada (C) FujitsuHiroshi Kitajima(C) NEC
Fumio Mizuno Meisei Univ.Masahiko Ikeno Mitsubishi
Ichiro Nakao National/PanasonicMotosuke Miyoshi Toshiba
Makoto Akizuki SanyoMasanori Takahashi Seiko
Norio Moriyama OkiHideyuki Sakaizawa TSKMasakazu Ichikawa JRCAT
6
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Yield Model and Defect BudgetYield Model and Defect Budget
Defect DetectionDefect Detection
Defect Sources and MechanismsDefect Sources and Mechanisms
Defect Prevention and EliminationDefect Prevention and Elimination
ProcessMaterialsProcessMaterials
ProcessEquipmentProcess
EquipmentWafer/Pkg
EnvironmentWafer/Pkg
EnvironmentParameter
ControlParameter
Control
Process toProcess
Interactions
Process toProcess
Interactions
Design toProcess
Interactions
Design toProcess
Interactions
Validation/Enhancement of Yield ModelsValidation/Enhancement of Yield Models
Defect Reduction TWG Yield Learning Cycle Focus Topics
7
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Proposed Name Change
• In order to align this chapter with the industry from a yield improvement perspective we propose the following name changes:
• Chapter: Defect Reduction -> Yield Enhancement
• Sub Chapters:– Yield Modeling and Defect Budget– Defect Detection -> Defect Detection and
Characterization– Defect Sources and Mechanisms -> Yield Learning– Defect Prevention and Elimination -> Wafer Environment
Contamination Control
8
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Technology Requirements:Yield Model and Defect Budget• GOAL: Provide reasonable and credible defect targets for tool suppliers
• Approach Defect budget requirements for the 2001 ITRS:– use results of a 1997, 1999, 2000 studies of current process-induced
defects (PID) at Intl. SEMATECH Member Companies.
– Calculation based on the negative binomial yield model
2 Ysort Ys Yr YsAD
* * 1
1
Ysort = Probe YieldYs = Systematic Limited YieldYr = Random Defect Limited YieldA = Chip Area (m2)D0 = Electrical Fault Density (/m2) = Cluster Factor
9
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Technology Requirements:Yield Model and Defect Budget• Extrapolation for future technology node requirements:
– from median PID value for typical tool in each process module by considering increase in area, increase in complexity, and shrinking feature size.
• Key assumption: – No new process, material, or tool will be acceptable with a larger
PID budget than prior processing methods. – Defect budgeting method tends to be a worst case model since all
process steps are assumed to be at minimum device geometry.
n n
n
n
n
n
PID PID F
F SS
1
1
1
*Where:PID = Process Induced Defects (/m2)n = Technology Node of InterestF = Faults per MaskS = Minimum Defect Size (nm)
10
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Technology Requirements: MPU/DRAM Fault Density Assumptions
• Assumptions defined in the “Overall Requirements Table Chapter” (ORTC) by the ITRS Die Size WG with Ysort = Ys*Yr
• With this assumption Defect Budget Targets for MPU and DRAM were calculated
P ro d u ct MP U D R AM
Yie ld Ra m p P h a se
R AM P PH AS E E N D
PR ODUCT ION PH AS E E N D
YOVERALL 75% 85%
YRAN D OM 83% 89.5%
YSYSTEMATIC 90% 95%
Clu s te r P a ram e te r
5 5
Ch ip S ize 170 mm2 through 2002, then increasing 132 mm2 in 1999, then increasing
11
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Yield Model and Defect Budget Tables 76-77
Key 2001 Updates• Defect budget target calculation makes use of data
from 3 different surveys of ISMT Member Companies (1997, 1999, 2000)
• Defect budget targets include wafer-handling defectivity, for 2001 reduced # of handling steps in generic process flow
• DRAM defect budget targets not extrapolated from the MPU data, but calculated based on a generic DRAM process flow
• Key assumptions:– Random & systematic yield targets same as 1999/2000– Model assumes that redundancy is sufficient such that array
is not limiting DRAM yield – All process steps are at minimum device geometry
12
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Yield Model and Defect Budget Tables 76-77
Key 2001 Updates• Technology requirement color-code
determined by tool yield impact partitioning study
• Including a calculator for DRAM & MPU tool defect budget targets
– Critical Defect Size, RDLY target, Die Size, # Mask Levels and Cell area user definable
13
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 76: YMDB - MPU Technology Requirements -
Table 76 Yield Model and Defect Budget MPU Technology RequirementsYear of Introduction"Technology Node"
2001130nm
2002115 nm
2003 100nm
200490nm
2005 80nm
200670nm
200765nm
201045nm
201332nm
201622nm
MPUMPU 1/2 Pitch (A) 150 130 107 90 80 70 65 45 32 22Critical Defect Size 75 65 54 45 40 35 33 23 16 11Chip Size (B) 140 140 140 140 140 140 140 140 140 140Overall Electrical D0 (faults/m 2̂)at critical defect size or greater (C) 2115 2115 2115 2115 2115 2115 2115 2115 2115 2115Random D0 * (faults/m 2̂) (D) 1356 1356 1356 1356 1356 1356 1356 1356 1356 1356# Mask Levels (E) 25 25 25 25 25 27 27 27 29 29Random Faults/Mask 54 54 54 54 54 50 50 50 47 47
14
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 76: YMDB - MPU Technology Requirements - continued
MPU Random Particles per Wafer pass (PWP) Budget (defects/m2) for Generic Tool Typescaled to 75nm critical defect size or greater (F)Year of Introduction"Technology Node"
2001130nm
2002115 nm
2003 100nm
200490nm
2005 80nm
200670nm
200765nm
201045nm
201332nm
201622nm
CMP Clean 448 337 228 161 127 90 78 37 18 8CMP Insulator 1084 814 552 390 308 219 189 90 43 20
CMP Metal 1225 920 623 441 348 247 213 102 48 23Coat/Develop/Bake 196 147 100 70 56 39 34 16 8 4
CVD Insulator 963 772 523 370 292 207 179 86 40 19CVD Oxide Mask 1267 950 644 455 360 255 220 105 50 23
Dielectric Track 308 232 157 111 88 62 54 26 12 6Furnace CVD 549 412 279 198 156 111 95 46 22 10
Furnace Fast Ramp 497 373 253 179 141 100 86 41 19 9Furnace Oxide/Anneal 321 241 164 116 91 65 56 27 13 6
Implant High Current 430 323 219 155 122 87 75 36 17 8Implant Low/Med Current 392 295 200 141 112 79 68 33 15 7
Inspect PLY 400 300 203 144 114 81 70 33 16 7Inspect Visual 429 323 219 155 122 87 75 36 17 8
Litho Cell 332 250 169 120 95 67 58 28 13 6Litho Stepper 315 237 160 113 90 64 55 26 12 6
15
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 76: YMDB - MPU Technology Requirements - continued
MPU Random Particles per Wafer pass (PWP) Budget (defects/m2) for Generic Tool Typescaled to 75nm critical defect size or greater (F)Year of Introduction"Technology Node"
2001130nm
2002115 nm
2003 100nm
200490nm
2005 80nm
200670nm
200765nm
201045nm
201332nm
201622nm
Measure CD 374 281 190 135 106 75 65 31 15 7Measure Film 321 241 164 116 91 65 56 27 13 6
Measure Overlay 298 224 152 107 85 60 52 25 12 6Metal CVD 585 439 298 211 166 118 102 49 23 11
Metal Electroplate 302 227 154 109 86 61 52 25 12 6Metal Etch 1300 976 661 468 370 262 226 108 51 24Metal PVD 667 501 339 240 190 135 116 56 26 12
Plasma Etch 1183 889 602 426 336 239 206 99 46 22Plasma Strip 547 411 278 197 156 110 95 46 21 10
RTP CVD 357 268 181 128 101 72 62 30 14 7RTP Oxide/Anneal 234 175 119 84 66 47 41 19 9 4
Test 91 69 47 33 26 18 16 8 4 2Vapor Phase Clean 822 617 418 296 234 166 143 68 32 15
Wafer Handling 37 28 19 13 10 7 6 3 1 1Wet Bench 535 402 272 192 152 108 93 45 21 10
16
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 77: YMDB - DRAM Technology Requirements
Table 77 Yield Model and Defect Budget DRAM Technology RequirementsYear of Introduction"Technology Node"
2001130nm
2002115 nm
2003 100nm
200490nm
2005 80nm
200670nm
200765nm
201045nm
201332nm
201622nm
DRAMDRAM / ASIC 1/2 Pitch (A) 130 115 100 90 80 70 65 45 32 22Critical Defect Size 65 58 50 45 40 35 33 23 16 11Chip Size (B) 127 100 118 93 147 116 183 181 240 238Cell Array Area % @ Production 55% 55% 56% 56% 56% 57% 57% 58% 58% 58%Non-Core Area (mm^2) 57 45 52 41 64 50 79 77 101 99Overall Electrical D0 (faults/m^2)at critical defect size or greater (C) 2880 3696 3163 4047 2580 3293 2100 2155 1643 1670Random D0 * (faults/m^2) (D) 1956 2510 2148 2748 1752 2236 1426 1464 1116 1134# Mask Levels (E) 21 22 24 24 24 24 24 26 26 26Random Faults/Mask 93 114 89 115 73 93 59 56 43 44
17
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 77: YMDB - DRAM Technology Requirements – continued
DRAM Random Paritcle per Wafer pass (PWP) Budget (defects/m2) for Generic Tool Typescaled to 75nm critical defect size or greater (F)Year of Introduction"Technology Node"
2001130nm
2002115 nm
2003 100nm
200490nm
2005 80nm
200670nm
200765nm
201045nm
201332nm
201622nm
CMP Clean 1072 1028 610 632 318 311 171 78 30 14CMP Insulator 830 795 472 489 246 241 132 60 23 11
CMP Metal 1272 1219 723 750 378 369 203 92 36 17Coat/Develop/Bake 331 318 188 195 98 96 53 24 9 4
CVD Insulator 920 882 523 542 273 267 147 67 26 12CVD Oxide Mask 1129 1082 642 665 335 327 180 82 32 15
Dielectric Track 465 446 264 274 138 135 74 34 13 6Furnace CVD 635 609 361 374 189 184 101 46 18 9
Furnace Fast Ramp 599 575 341 353 178 174 96 43 17 8Furnace Oxide/Anneal 479 459 272 282 142 139 76 35 13 6
Implant High Current 557 534 316 328 165 161 89 40 16 7Implant Low/Med Current 531 509 302 313 158 154 85 38 15 7
Inspect PLY 726 696 413 428 216 211 116 53 20 10Inspect Visual 749 718 426 441 222 217 119 54 21 10
Litho Cell 622 596 354 367 185 180 99 45 17 8Litho Stepper 413 396 235 244 123 120 66 30 12 6
18
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 77: YMDB - DRAM Technology Requirements – continued
DRAM Random Paritcle per Wafer pass (PWP) Budget (defects/m2) for Generic Tool Typescaled to 75nm critical defect size or greater (F)Year of Introduction"Technology Node"
2001130nm
2002115 nm
2003 100nm
200490nm
2005 80nm
200670nm
200765nm
201045nm
201332nm
201622nm
Measure CD 620 595 353 366 184 180 99 45 17 8Measure Film 584 560 332 344 173 169 93 42 16 8
Measure Overlay 568 545 323 335 169 165 91 41 16 8Metal CVD 585 561 333 345 174 170 93 42 16 8
Metal Electroplate 445 426 253 262 132 129 71 32 12 6Metal Etch 1077 1032 612 634 320 312 172 78 30 14Metal PVD 642 615 365 378 191 186 102 46 18 9
Plasma Etch 1140 1093 648 672 338 331 182 83 32 15Plasma Strip 875 839 497 516 260 254 140 63 24 12
RTP CVD 572 549 325 337 170 166 91 41 16 8RTP Oxide/Anneal 418 401 238 247 124 121 67 30 12 6
Test 82 78 46 48 24 24 13 6 2 1Vapor Phase Clean 1210 1160 688 713 359 351 193 88 34 16
Wafer Handling 34 33 20 20 10 10 5 2 1 0Wet Bench 866 831 493 511 257 251 138 63 24 12
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July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Defect Detection Table 78
Key 2001 Updates
• ITRS Node definition updated to reflect changes made to the ORTC Tables with respect to year/technology node.
• High Aspect Ratio inspection can only be achieved at extremely low throughput (1 wafer/hour) and high cost of ownership ($20-$50/wafer). Therefore, it is not a manufacturing process and is currently “red”.
• Backside particle size line was reinstated into Table 78 due to member interest.
20
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 78: Defect DetectionTechnology Requirements - Short Term
Table 78: Technology Requirements for Defect DetectionShort-term Years NODE = 1/2 DRAM METAL 1 PITCH
Year 2001 2002 2003 2004 2005 2006 2007Technology Node 130 nm 115 100 90 nm 80 70 65Patterned Wafer Inspection, PSL Spheres at 90% Capture, Equivalent Sensitivity (nm) *[A, B]Process R&D at 300 cm2/hr (Was) 43 39 36 33 30 27 24Process R&D at 300 cm2/hr - 1 W/hr (Is) 78 72 66 54 48 42 19.5Yield Ramp at 3000 cm2/hr (Was) 57 52 48 44 40 36 32Yield Ramp at 1200 cm2/hr - 4W/hr (Is) 104 96 88 72 56 56 52Volume Production at 10000 cm2/hr (Was) 72 65 60 55 50 45 40Volume Production at 3000 cm2/hr - 10W/hr (Is) 130 120 110 90 80 70 66High Aspect Ratio Feature Inspection: Defects other than Residue, Equivalent Sensitivity in PSL Diameter (nm) at 90% Capture Rate *[C]All stages of manufacturing (Was) 43 39 36 33 30 27 24All stages of manufacturing (Is) 130 120 110 90 80 70 66Process Verification - 1 W/hr 130 120 110 90 80 70 66Volume Manufacturing - 4 W/hr 130 120 110 90 80 70 66
Cost of Ownership :Volume Man., Non-HARi, $/wafer scanned, 10 /hr 2 - 5 2 - 5 2 - 5 3 - 7 3 - 7 3 - 7 3 - 7CoO HARi 20 - 50 20 - 50 20 - 50 20 - 50 20 - 50 20 - 50 20 - 50
21
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 78: Defect DetectionTechnology Requirements - Short Term
Table 78: Technology Requirements for Defect DetectionShort-term Years NODE = 1/2 DRAM METAL 1 PITCH
Year 2001 2002 2003 2004 2005 2006 2007Technology Node 130 nm 115 100 90 nm 80 70 65Unpatterned, PSL Spheres at 90% Capture, Equivalent Sensitivity (nm) *[D, E, I ]
Metal Film (Was) 51 47 43 35 30 21 19Metal Film (Is) 91 85 77 72 67 59 55Nonmetal Films (Was) 39 36 33 27 24 21 19Nonmetal Films (Is) 70 65 59 49 43 35 33Bare Silicon (Was) 39 36 33 27 24 21 19Bare Silicon (Is) 70 65 59 49 43 35 33Wafer Backside 200mm : # events flip method 2500 2000 2000 2000 2000 2000 1000Wafer Backside 200mm : Defect Size nm 200 200 200 200 100 100 100Defect Review (Patterned wafer)
Resolution (nm) *[F] 7 7 6 5 5 4 3Coordinate Accuracy (um) at Resolution 2 2 1 1 1 1 1Coordinate Accuracy (um) at Size 15 12 12 10 10 7 7Automatic Defect Classification at Defect Review Platform *[G, H]Redetection: minimum defect size (nm) 52 48 44 36 30 28 26Number of defect types (Was) 10 10 10 15 15 15 15Number of defect types (Is) 10 10 12 12 15 15 15Speed (seconds/defect) 7 6 5 5 5 5 5Speed - w/ elemental (seconds/defect) 20 15 13 10 10 10 10
22
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 78: Defect DetectionTechnology Requirements – Long Term
Table 78: Technology Requirements for Defect DetectionLong-term YearsYear 2010 2013 2016 DriverTechnology Node 45 nm 32 nm 22 nmPatterned Wafer Inspection, PSL Spheres at 90% CaptureProcess R&D at 300 cm2/hr (Was) 17 12 8 0.3 x DRProcess R&D at 300 cm2/hr - 1 W/hr (Is) 27 19 13 0.6 x DRYield Ramp at 3000 cm2/hr (Was) 23 16 11 0.4 xDRYield Ramp at 1200 cm2/hr - 4W/hr (Is) 36 26 18 0.8 x DRVolume Production at 10000 cm2/hr (Was) 28 20 13 0.5 x DRVolume Production at 3000 cm2/hr - 10W/hr (Is) 46 32 22 1.0 x DRHigh Aspect Ratio Feature Inspection: Defects other than ResidueAll stages of manufacturing (Was) 17 12 8 0.3 x DRAll stages of manufacturing (Is) 46 32 22 1.0 x DR
Process Verification - 1 W/hr 46 32 22 1.0 x DR
Volume Manufacturing - 4 W/hr 46 32 22 1.0 x DRCost of Ownership :Volume Man., Non-HARi, $/wafer scanned, 10 /hr 3 - 7 3 - 5 3 - 5CoO HARi 20 - 50 20 - 50 20 - 50
23
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 78: Defect DetectionTechnology Requirements – Long Term
Table 78: Technology Requirements for Defect DetectionLong-term YearsYear 2010 2013 2016 DriverTechnology Node 45 nm 32 nm 22 nmUnpatterned, PSL Spheres at 90% Capture, Equivalent Sensitivity (nm) *[D, E, I]Metal Film (Was) 14 9.5 6.5 0.3 x DRMetal Film (Is) 40 29 20 0.5 x DRNonmetal Films (Was) 14 9.5 6.5 0.3 x DRNonmetal Films (Is) 23 16 11 0.5 x DRBare Silicon (Was) 14 9.5 6.5 0.3 x DRBare Silicon (Is) 23 16 11 0.5 x DRWafer Backside 200mm : # events flip method 1000 1000 500Wafer Backside 200mm : Defect Size nm 100 60 50Defect Review (Patterned wafer)
Resolution (nm) *[F] 3 2 2 0.05 x DRCoordinate Accuracy (um) at Resolution 0.5 0.5 0.5 *Coordinate Accuracy (um) at Size 5 5 5Automatic Defect Classification at Defect Review PlatformRedetection: minimum defect size (nm) 18 13 9 0.4 x DRNumber of defect types (Was) 20 20 25 **Number of defect types (Is) 20 20 25 **Speed (seconds/defect) 5 5 5Speed - w/ elemental (seconds/defect) 10 10 10
24
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Yield Learning Key 2001 Updates
• ITRS Node definition updated to reflect changes made to the ORTC Tables with respect to year/technology node.
• Yield Learning– The time necessary to source manufacturing problems
is approximately 50% of the theoretical process cycle time on average during yield ramp
– In order to keep the yield learning rate manageable, the process development and technology transfer to manufacturing must be optimized to minimize new defect sources/mechanisms during yield ramp.
25
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Yield Learning Key 2001 Updates
• Yield Learning (continued)– Integrated Data Management (IDM) is critical for
maintaining productivity comprehending • integrated circuit design• visible defects• non-visual defects• parametric data• electrical test faults• process trends and excursions• rapid identification of yield detracting mechanisms
26
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 79a: Yield LearningTechnology Requirements - Short TermTable 79a: Technology Requirements for Yield LearningShort Term Years
Year of Production 2001 2002 2003 2004 2005 2006 2007DRAM ½ Pitch (Sc. 2.0) 130 115 100 90 80 70 65
MPU Printed Gate Length (Sc. 3.7) 90 75 65 53 45 40 35
Wafer size (mm) 300 300 300 300 300 300 300Wafer area (mm2) 70714 70714 70714 70714 70714 70714 70714.29Number of mask levels 25 25 25 27 27 27 29Number of processing steps 490 503 516 530 543 556 570Cycle time during ramp (# days) 25 25 25 27 27 27 29Defect/Fault Sourcing Complexity [A], [F]Logic transistor density/cm2 (1E6) 14 19 26 35 47 63 85Defect sourcing complexity factor (1E9) [B] 7 10 13 18 25 35 49Defect sourcing complexity trend [C] 1 1 2 3 4 5 7Data Analysis for Rapid Defect/Fault SourcingPatt wfr insp sensitivity (nm) during yield ramp 52 46 40 36 32 28 26Average # of inspections/wafer during full flow 5 5 5 5.4 5.4 5.4 5.8(# data items/wafer) (1E13) [D] 5.5 7.1 9.4 12.5 15.8 20.7 25.7Defect data volume (DV) trend [E] 1 1 2 2 3 4 5Yield Learning During Ramp from 30% to 80% Sort Yield# of yield learning cycles/year based on full flow cycle time 14.6 14.6 14.6 13.5 13.5 13.5 12.6Required yield improvement rate per learning cycle 3.4 3.4 3.4 3.7 3.7 3.7 4.0Time to identify & fix new defect/fault source during ramp 12.5 12.5 12.5 13.5 13.5 13.5 14.5# of learning cycles/yr for 1 defect/fault source/month 8.6 8.6 8.6 7.5 7.5 7.5 6.6Req yld impr rate/learning cycle for 1 defect/fault source/month 5.8 5.8 5.8 6.7 6.7 6.7 7.6Excursion Control During ManufacturingTBD TBD TBD TBD TBD TBD TBD TBDTBD TBD TBD TBD TBD TBD TBD TBDTBD TBD TBD TBD TBD TBD TBD TBD
27
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 79b: Yield LearningTechnology Requirements - Long Term
Table 79b: Technology Requirements for Yield LearningLong Term YearsYear of Production 2010 2013 2016DRAM ½ Pitch (Sc. 2.0) 45 32 22
MPU Printed Gate Length (Sc. 3.7) 25 18 13
Wafer size (mm) 450 450 450
Wafer area (mm2) 159107 159107 159107
Number of mask levels 31 33 35
Number of processing steps 610 650 690
Cycle time during ramp (# days) 31 33 35
Defect/Fault Sourcing Complexity [A], [F]
Logic transistor density/cm2 (1E6) 210 519 1279Defect sourcing complexity factor (1E9) [B] 128 337 883Defect sourcing complexity trend [C] 18 48 126Data Analysis for Rapid Defect/Fault SourcingPatt wfr insp sensitivity (nm) during yield ramp 18 13 9Average # of inspections/wafer during full flow 6.2 6.6 7(#data items/wafer) (1E13) [D] 57.4 120.8 271.2Defect data volume (DV) trend [E] 10 22 49Yield Learning During Ramp from 30% to 80% sort yield# of yield learning cycles/year based on full flow cycle time 11.8 11.1 10.4Required yield improvement rate per learning cycle 4.2 4.5 4.8Time to identify & fix new defect/fault source during ramp 15.5 16.5 17.5# of learning cycles/yr for 1 defect/fault source/month 5.8 5.1 4.4Req yld impr rate/learning cycle for 1 defect/fault source/month 8.7 9.9 11.3Excursion Control During ManufacturingTBD TBD TBD TBD
28
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Wafer Environment Contamination Control Key 2001 Updates
Focus on:• Aligning tables to ORTC requirements• Aligning critical particle size to Defect
Detection (1X DR for volume production)• Further Clarification of PoP, PoC, PoU • Better interlock with other TWGs for
introduction of new materials, device architectures
• Do not anticipate major deltas to plan and• Do not expect much yellow/red on tables.
29
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Wafer Environment Contamination Control Key 2001 Updates
• Atmospheric/Airborne Wafer Environmental Control – Believe assumptions used in past will continue to hold up (e.g.
particle deposition, molecular adsorption)– No real drivers identified to justify significant deltas from
1999/2000– Will tap into SEMI mini-environment group currently collecting
data on Atomic/Molecular Contamination (AMC) for standards – Must consider capture of reticle requirements for AMC
• Ultra-Pure H20 – Particles: align with defect detection – Current mis-match between projected capability
(filtration) and detection. Will show projected capability in table.
– Create “most critical” / “less Critical” categories for ions and metallics.
– Must coordinate better w/ ESH on water conservation/reclaim.– Need sanity check on surface prep.
30
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Wafer Environment Contamination Control Key 2001 Updates
• Chemicals – Focus on correcting inconsistencies: Chemical vs Water.
• Gases – Basically no changes except for realigning w/ ORTC
Scenarios– Likely to remove corrosives for metal etch and add new
category for ILD precursors.
31
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 80: Wafer Environment Contam. ControlTechnology Requirements – Near Term
Year of Introduction"Technology Node"
2001130nm
2002115
2003 100nm
200490nm
2005 80nm
200670nm
200765nm
Critical particle size (nm) [A] 65 58 52 45 38 35 33
Particles ³ critical size (/m3 ) [B] 5 4 3 2 2 1 1
Lithography—Bases (as amine, amide, or NH3) 750 750 750 750 750 <750 <750
Gate—Metals (as Cu, E=2 × 10–5) [C] 0.2 0.2 0.15 0.1 0.1 0.07 <0.07
Gate—Organics (as molecular weight greater than or equal to 250, E=1 × 10–3) [D] 100 90 80 70 60 60 50
—Organics(as CH2) 1800 1620 1440 1260 1100 900 <900
Salicidation contact—acids (as Cl–, E=1 × 10–5) 10 10 10 10 10 <10 <10
Salicidation contact—bases (as NH3, E=1 × 10–6) 20 16 12 10 8 4 <4
Dopants (P or B ) [F] < 10 < 10 < 10 < 10 < 10 < 10 < 10
Critical particle size (nm) [A] 65 58 52 45 38 35 33
Tota l oxidizable carbon (ppb) 1 1 < 1 < 1 < 1 < 1 < 1
Bacteria (CFU/ li ter) < 1 < 1 < 1 < 1 < 1 < 1 < 1
Tota l Silica (ppb) 0.05 0.05 0.05 0.05 0.01 0.01 0.01
Dissolved oxygen (ppb) 1 1 1 1 1 1 1
Particles ³ critical size (/ml) < 0.2 < 0.2 < 0.2 < 0.2 < 0.2 < 0.2 < 0.2
Critical cation, anion, metals (ppt, each) < 20 < 20 < 20 10 10 10 10
Table 80a Defect Prevention and Elimination Technology Requirements—Near Term
Wafer Environment Control
Airborne Molecular Contaminants (pptM) [C]
Process Critical Materials
Ultrapure Water
32
July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 80: Wafer Environment Contam. ControlTechnology Requirements – Near Term (cont.)
Year of Introduction"Technology Node"
2001130nm
2002115 nm
2003 100nm
200490nm
2005 80nm
200670nm
200765nm
Liquid Chemicals [E]Particles ³ cri tical size (/ml)
HF-, H2O2, NH4OH: Fe, Cu (ppt, each) < 150 <135 < 110 < 100 < 90 <50 <50
Critical cation, anion, metals (ppt, each) < 10 < 10 < 10 < 5 < 5 < 5 <1
HF-only TOC (ppb) < 30 < 30 < 25 < 20 < 15 <10 <10
HCl, H2SO4: All impurities (ppt) < 1000 < 1000 < 1000 < 1000 < 1000 < 1000 < 1000
BEOL Solvents, Strippers K, Li, Na (ppt, each) < 1000 < 1000 < 1000 < 1000 < 1000 < 1000 < 1000
N2,O2,Ar,H2: H2O,O2,CO2,CH4 (ppt, each) < 1000 < 1000 < 1000 < 1000 < 1000 <100 <100
Particles > cri tical size (liter) < 0.1 < 0.1 < 0.1 < 0.1 < 0.1 < 0.1 < 0.1
POU Particles ³ cr itical size (/li ter) [D] 2 2 2 2 2 2 2
O2 (ppbv) < 500 < 500 < 500 < 200 < 200 < 200 <100
H2O (ppbv) < 500 < 500 < 500 < 200 < 200 < 200 <100
O2 (ppbv) < 1000 < 1000 < 1000 < 500 < 500 <500 <100
H2O (ppbv) < 1000 < 1000 < 1000 < 500 < 500 <500 <100
Tota l metallics (pptwt) < 500 < 500 < 500 < 500 < 500 <100 <100
Specialty Gases
Corrosives—metal etchants
Inerts—Oxide/PR Etchants/Strippers
Bulk Ambient Gases
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July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 80: Wafer Environment Contam. ControlTechnology Requirements – Long Term
Year of Introduction"Technology Node"
201045nm
201332nm
201622nm
Critical particle size (nm) [A] 23 16 11
Particles ³ critical size (/m3 ) [B] 1 <1 <1
Lithography—Bases (as amine, amide, or NH3) <750 <750 <750
Gate—Metals (as Cu, E=2 × 10–5) [C] <0.07 <0.07 <0.07
Gate—Organics (as molecular weight greater than or equal to 250, E=1 × 10–3) [D] 40 30 20
—Organics(as CH2) <900 <900 <900
Salicidation contact—acids (as Cl–, E=1 × 10–5) <10 <10 <10
Salicidation contact—bases (as NH3, E=1 × 10–6) <4 <4 <4
Dopants (P or B ) [F] < 10 < 10 < 10
Critical particle size (nm) [A] 23 16 11
Total oxidizable carbon (ppb) < 1 < 1 < 1
Bacteria (CFU/ li ter) < 1 < 1 < 1
Total Silica (ppb) 0.01 <0.01 <0.01
Dissolved oxygen (ppb) 1 <1 <1
Particles ³ critical size (/ml) < 0.2 < 0.2 < 0.2
Critical cation, anion, metals (ppt, each) 10 <10 <10
Wafer Environment Control
Airborne Molecular Contaminants (pptM) [C]
Process Critical Materials
Ultrapure Water
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July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Table 80: Wafer Environment Contam. ControlTechnology Requirements – Long Term (cont.)
Year of Introduction"Technology Node"
201045nm
201332nm
201622nm
Liquid Chemicals [E]Particles ³ cri tical size (/ml)HF-, H2O2, NH4OH: Fe, Cu (ppt, each) <50 <40 <40
Critical cation, anion, metals (ppt, each) <1 <1 <1
HF-only TOC (ppb) <8 <6 <4
HCl, H2SO4: All impurities (ppt) < 1000 < 1000 < 1000
BEOL Solvents, Strippers K, Li, Na (ppt, each) < 1000 < 1000 < 1000
N2,O2,Ar,H2: H2O,O2,CO2,CH4 (ppt, each) <100 <100 <100
Particles > cri tical size (liter) < 0.1 < 0.1 < 0.1
POU Particles ³ cr itical size (/li ter) [D] 2 2 2
O2 (ppbv) <100 <50 <50
H2O (ppbv) <100 <50 <50
O2 (ppbv) <100 <50 <50
H2O (ppbv) <100 <50 <50
Tota l metallics (pptwt) <100 <50 <50
Specialty Gases
Corrosives—metal etchants
Inerts—Oxide/PR Etchants/Strippers
Bulk Ambient Gases
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July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Defect Detection and Characterization Key Issues for 2002
• High Aspect Ratio Inspection (HARI)– detection of defects occurring deep within structures having
depth to width ratios greater than 3– treated separately from patterned wafer inspection due to
special sensitivity requirements – not achievable in manufacturing environment due to low
throughput and high cost of ownership
• Automatic Defect Classification and Review (SEM)– Available technology can theoretically achieve required
speed (defects/sec) but practically falls short of required goal
– Dwell time required for EDX limits required throughput for automatic elemental classification
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July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Yield Learning Key Issues for 2002
• Yield Learning– Tools are needed to detect, review, classify, analyze and
source continuously shrinking visible defects– Techniques needed to rapidly isolate failures and partition
them into those caused by visible defects, non-visual defects, and parametric issues
– Automatic Defect Classification (ADC) and Spatial Signature Analysis (SSA) can provide a mechanism to convert basic defect, parametric, and electrical test data into useful process information
– Defect Sourcing• The electrical fault must be isolated (localized) within the chip. • The complexity of this task is proportional to the number of
transistors per unit area (cm2) times the number of process steps, forming the defect sourcing complexity factor as shown in Table 79
• In order to maintain the defect sourcing time, the time to isolate (localize) the electrical fault within the chip must not grow despite the increasing complexity
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July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Yield Learning Key Issues for 2002
• Yield Learning– Data Management
• A fundamental impediment to efficient IDM is a lack of standards on which to base system communication, data formats, and a common software interface between data repositories
• Retrieval of data from a variety of database sources will be required to efficiently reduce data sources to process-related information in a timely manner.
• Methods needed for integrating workflow information (such as WIP data) with the DMS, especially in commercial DMS systems
• Methods needed for recording time-based data (from in situ process sensors, tool health, and tool log data) such that it can be correlated with lot and wafer-based data are needed
• Yield prediction tools and methods continue to be limited to a small number of experts. Ability needs to be transferred to a broader engineering group. Will result in the rapid prioritization of defect generating mechanisms and faster engineering response to prioritized issues
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July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Difficult Challenges 65nm node and above
• Yield Model and Defect Budget– Random and systematic yield models have to be developed
and validated – Process induced defects, equipment generated particles,
product/process measurements, and design/layout sensitivities have to be correlated to yield
• Defect Detection and Characterization– High-speed, cost-effective tools must be developed that
rapidly detect defects associated with high-aspect ratio contacts/vias/trenches, and especially defects near/at the bottom of these features
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July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Difficult Challenges 65nm node and above
• Yield Learning– Automated, intelligent analysis and reduction algorithms
that correlate facility, design, process, test and WIP data must be developed to enable rapid root cause analysis of yield limiting conditions
– Wafer-edge management required for yield/defectivity optimization
• Wafer Environment Contamination Control– Need adaptive water reclaim procedures keyed to particular
process needs (define contaminants of interest and those not of interest)
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July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Difficult Challenges Less than 65nm
• Yield Model and Defect Budget– Yield models must comprehend greater parametric
sensitivities, impact of circuit design, complex integration issues, greater transistor packing, ultra-thin film integrity, etc.
• Defect Detection and Characterization– Lack of enabling technology to detect or review defects
• Yield Learning– Failure analysis tools and techniques are needed to enable
localization of defects where no visual defect is detected– IC designs must be optimized for a given process capability
and must be testable/diagnosable.
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July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Scope Expansions
• Defect Detection and Characterization– Need recommendation for types of wafers (preparation) and
process to be used for maximum sensitivity at each process step
– Current detection recipes relatively insensitive to wafer-edge defectivity (exclusion area = 2 to 10 mm)
• Yield Learning– Specific recommendations for test structures and short
loops including warning limits for generic process flows– Specific sampling model, including evaluation of inventory
risk at each sampling level.
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July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Yield Model and Defect Budget Proposed Solutions
2003 2005 20072001 2011 2013 20152009 2017
Research Required Development Underway Qualification/Pre-Production
This legend indicates the time during which research, development, and qualification/pre-production should be taking place for the solution.
First Year of IC Production
2004 2006 20082002 2012 2014 20162010
YIELD MODEL
Defect Budget node-by-node validation
Circuit limited yield model
Statistics of ultra small population
Scaling FEOL complexity
Parametric limited yield model
DEFECT BUDGETING
Ultra-thin film integrity
Advanced test structures
Low defect surface preparation.
2003 2005 20072001 2011 2013 20152009 2017
Research Required Development Underway Qualification/Pre-Production
This legend indicates the time during which research, development, and qualification/pre-production should be taking place for the solution.
First Year of IC Production
2004 2006 20082002 2012 2014 20162010
2003 2005 20072001 2011 2013 20152009 2017
Research Required Development Underway Qualification/Pre-Production
This legend indicates the time during which research, development, and qualification/pre-production should be taking place for the solution.
First Year of IC Production 2003 2005 20072001 2011 2013 20152009 2017
Research Required Development Underway Qualification/Pre-Production
This legend indicates the time during which research, development, and qualification/pre-production should be taking place for the solution.
2003 2005 20072001 2011 2013 20152009 20172003 2005 20072001 2011 2013 20152009 20172003 2005 20072001 2011 2013 20152009 20172003 2005 20072001 2011 2013 20152009 20172003 2005 20072001 2011 2013 20152009 2017
Research Required Development Underway Qualification/Pre-Production
This legend indicates the time during which research, development, and qualification/pre-production should be taking place for the solution.
Research Required Development Underway Qualification/Pre-Production
This legend indicates the time during which research, development, and qualification/pre-production should be taking place for the solution.
First Year of IC Production
2004 2006 20082002 2012 2014 201620102004 2006 20082002 2012 2014 20162010
YIELD MODEL
Defect Budget node-by-node validation
Circuit limited yield model
Statistics of ultra small population
Scaling FEOL complexity
Parametric limited yield model
DEFECT BUDGETING
Ultra-thin film integrity
Advanced test structures
Low defect surface preparation.
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July 16-18, 20012001 ITRS Conference 18 July 2001 Work In Progress – Not for Publication
Yield Learning Proposed Solutions
Figure 57 Yield Learning Potential Solutions
NON-VISUAL DEFECT SOURCING
Research Required Development Underway Qualification/Pre-Production
This legend indicates the time during which research, development, and qualification/pre-production should be taking place for the solution.
INTEGRATED DATA MANAGE-MENT FOR RAPID DEFECTSOURCING
Standard data formats
Universal wafer coordinates
Automated data reduction algorithm
Auto methods to correlate design,process, and test
ELECTRICAL FAULT SOURCINGBIST
Design for diagnosis
Failure probability modeling
Fault to defect mapping
BIST
Design to process interaction modeling
Improved Micro-analytical resolution
PARAMETRIC DISTURBANCESOURCINGProcess capability analysis
Auto revision of test structure with designrevisionPredictive parametric disturbancemodeling
First Year of IC Production 2001 2004 2007 2010 2013 2016